Back to Search Start Over

GPT-4 Underperforms Experts in Detecting IV Fluid Contamination.

Authors :
Spies, Nicholas C
Hubler, Zita
Roper, Stephen M
Omosule, Catherine L
Senter-Zapata, Michael
Roemmich, Brittany L
Brown, Hannah Marie
Gimple, Ryan
Farnsworth, Christopher W
Source :
Journal of Applied Laboratory Medicine; Nov2023, Vol. 8 Issue 6, p1092-1100, 9p
Publication Year :
2023

Abstract

Background: Specimens contaminated with intravenous (IV) fluids are common in clinical laboratories. Current methods for detecting contamination rely on insensitive and workflow-disrupting delta checks or manual technologist review. Herein, we assessed the utility of large language models for detecting contamination by IV crystalloids and compared its performance to multiple, but variably trained healthcare personnel (HCP). Methods: Contamination of basic metabolic panels was simulated using 0.9% normal saline (NS), with (n = 30) and without (n = 30) 5% dextrose (D5NS), at mixture ratios of 0.10 and 0.25. A multimodal language model (GPT-4) and a diverse panel of 8 HCP were asked to adjudicate between real and contaminated results. Classification performance, mixture quantification, and confidence was compared by Wilcoxon rank sum. Results: The 95% CIs for accuracy were 0.57–0.71 vs 0.73–0.80 for GPT-4 and HCP, respectively, on the NS set and 0.57–0.57 vs 0.73–0.80 on the D5NS set. HCP overestimated severity of contamination in the 0.10 mixture group (95% CI of estimate error, 0.05–0.20) for both fluids, while GPT-4 markedly overestimated the D5NS mixture at both ratios (0.16–0.33 for NS, 0.11–0.35 for D5NS). There was no correlation between reported confidence and likelihood of a correct classification. Conclusions: GPT-4 is less accurate than trained HCP for detecting IV fluid contamination of basic metabolic panel results. However, trained individuals were imperfect at identifying contaminated specimens implying the need for novel, automated tools for its detection. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
24757241
Volume :
8
Issue :
6
Database :
Complementary Index
Journal :
Journal of Applied Laboratory Medicine
Publication Type :
Academic Journal
Accession number :
174274512
Full Text :
https://doi.org/10.1093/jalm/jfad058